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Using Sensitivity Analyses for Unobserved Confounding to Address Covariate Measurement Error in Propensity Score Methods

机译:使用敏感性分析进行不易察觉的混淆以解决倾向得分方法中的协变量测量误差

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摘要

Propensity score methods are a popular tool with which to control for confounding in observational data, but their bias-reduction properties—as well as internal validity, generally—are threatened by covariate measurement error. There are few easy-to-implement methods of correcting for such bias. In this paper, we describe and demonstrate how existing sensitivity analyses for unobserved confounding—propensity score calibration, VanderWeele and Arah’s bias formulas, and Rosenbaum’s sensitivity analysis—can be adapted to address this problem. In a simulation study, we examine the extent to which these sensitivity analyses can correct for several measurement error structures: classical, systematic differential, and heteroscedastic covariate measurement error. We then apply these approaches to address covariate measurement error in estimating the association between depression and weight gain in a cohort of adults in Baltimore, Maryland. We recommend the use of VanderWeele and Arah’s bias formulas and propensity score calibration (assuming it is adapted appropriately for the measurement error structure), as both approaches perform well for a variety of propensity score estimators and measurement error structures.
机译:倾向得分方法是一种流行的工具,可用来控制观测数据中的混淆,但是它们的偏差减少特性以及内部有效性通常受到协变量测量误差的威胁。很少有易于实现的校正此类偏差的方法。在本文中,我们描述并证明了现有的针对未观察到的混淆的敏感性分析(倾向得分校准,范德韦勒和Arah的偏差公式以及Rosenbaum的敏感性分析)如何适用于解决此问题。在仿真研究中,我们检查了这些灵敏度分析可在多大程度上校正几种测量误差结构:经典误差,系统微分误差和异方差协变量测量误差。然后,我们在马里兰州巴尔的摩的一组成年人中,使用这些方法来解决协变量测量误差,以估计抑郁与体重增加之间的关联。我们建议使用VanderWeele和Arah的偏差公式和倾向得分校准(假设它已针对测量误差结构进行了适当调整),因为这两种方法对于各种倾向得分估算器和测量误差结构都表现良好。

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